Lecture

Analysis of Geographic Information: GeoDa

Description

This lecture covers the main functions of the GeoDa software for exploratory analysis of vectorial data attributes, including creating thematic maps, histograms, box plots, and scatter plots. Additionally, it demonstrates how to calculate spatial auto-correlation and regressions, highlighting GeoDa's dynamic interaction feature.

In MOOCs (2)
Geographical Information Systems 2
This course is the second part of a course dedicated to the theoretical and practical bases of Geographic Information Systems (GIS). It offers an introduction to GIS that does not require prior compu
Geographical Information Systems 2
This course is the second part of a course dedicated to the theoretical and practical bases of Geographic Information Systems (GIS). It offers an introduction to GIS that does not require prior compu
Instructor
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